Urban
greenspace (UGS) is a crucial nature-based solution
for mitigating
increasing human exposure to extreme heat, but its long-term potential
has been poorly quantified. We used high spatial-temporal resolution
data sets of urban land cover and population grid in combination with
an urban climate model, machine learning, and land use simulation
model to assess the impact of UGS on population exposure to extreme
(high-heat exposure, HHE) and its potential spatial optimization strategies.
Results showed that the UGS and HHE have a strong spatiotemporal dynamic
coupling in 21st century Chinese cities. Moreover, UGS shrinkage increased
the HHE by 0.58–1.15 °C, while UGS expansion mitigated
it by 0.72–1.26 °C, both stronger in the SSP3–7.0
and SSP5–8.5 scenarios. Different from common impressions,
spatial relationships, rather than quantities of UGS, are more influential
(1.3–1.8 times) on HHE. Our solutions suggest that simply enhancing
the spatial dynamic connectivity between patches can mitigate HHE
by 9.1–21.1%, especially for the eastern and central cities.
Our results provide an example of how to improve climate adaptation
in urban ecological space designs and strongly promote research on
optimal spatial patterns for future robust urban heat mitigation.